In their own words: A mixed-methods exploration of public perceptions of affordable housing and their connections to support

IF 6 1区 经济学 Q1 URBAN STUDIES Cities Pub Date : 2024-08-20 DOI:10.1016/j.cities.2024.105383
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Abstract

One of the main barriers faced by proposed affordable housing developments is local public opposition. Consequently, this exploratory study seeks: 1) to determine the U.S. public's current top-of-mind perceptions of affordable housing, and 2) to understand which of these perceptions are related to self-reported support for affordable housing in one's own neighborhood. We employ a mixed-methods approach, administering a nation-wide online survey (N = 534) of close- and open-ended questions. While no majority understood definition emerged, through our discursive analysis and natural language process (NLP) topic modeling we uncover common and persisting perceptions of current affordable housing buildings as federally supported apartments that are run-down and in undesirable neighborhoods. Narratives about residents are limited, though when prompted participants have a clear perceived racial profile of residents. Using a conditional inference regression tree (CI-Tree) and NLP language feature associations, we also find that perceptions focused on government involvement, subsidies, and unsafe neighborhoods are significant predictors of lower support for proposed developments. Alternatively, mentioning the financial aspects of affordable housing is significantly associated with higher support. These findings demonstrate the potential of machine learning methods in uncovering pathways to support affordable housing and can be leveraged for effective framing of proposed developments.

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用他们自己的话说用混合方法探讨公众对经济适用房的看法及其与支持的联系
拟议的经济适用房开发项目面临的主要障碍之一是当地公众的反对。因此,这项探索性研究旨在1)确定美国公众目前对经济适用房的首要看法,以及 2)了解这些看法中哪些与自我报告的对所在社区经济适用房的支持有关。我们采用了一种混合方法,在全国范围内开展了一项在线调查(N = 534),调查内容包括封闭式和开放式问题。虽然没有出现大多数人都能理解的定义,但通过我们的话语分析和自然语言处理(NLP)主题建模,我们发现了人们对当前经济适用房建筑的普遍且持续的看法,即由联邦政府支持的公寓破旧不堪,位于不受欢迎的社区。关于居民的叙述很有限,但在提示下,参与者对居民的种族特征有明确的认知。通过使用条件推理回归树(CI-Tree)和 NLP 语言特征关联,我们还发现,对政府参与、补贴和不安全社区的看法是降低拟议开发项目支持率的重要预测因素。另外,提及经济适用房的财务方面与较高的支持率也有显著关联。这些发现证明了机器学习方法在发现支持经济适用房的途径方面的潜力,并可用于对拟议开发项目进行有效的框架设计。
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来源期刊
Cities
Cities URBAN STUDIES-
CiteScore
11.20
自引率
9.00%
发文量
517
期刊介绍: Cities offers a comprehensive range of articles on all aspects of urban policy. It provides an international and interdisciplinary platform for the exchange of ideas and information between urban planners and policy makers from national and local government, non-government organizations, academia and consultancy. The primary aims of the journal are to analyse and assess past and present urban development and management as a reflection of effective, ineffective and non-existent planning policies; and the promotion of the implementation of appropriate urban policies in both the developed and the developing world.
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